A gradient flow model for the Gross--Pitaevskii problem: Mathematical and numerical analysis
By: Tianyang Chu , Xiaoying Dai , Jing Wu and more
Potential Business Impact:
Makes tiny particles in cold gas behave predictably.
This paper concerns the mathematical and numerical analysis of the $L^2$ normalized gradient flow model for the Gross--Pitaevskii eigenvalue problem, which has been widely used to design the numerical schemes for the computation of the ground state of the Bose--Einstein condensate. We first provide the mathematical analysis for the model, including the well-posedness and the asymptotic behavior of the solution. Then we propose a normalized implicit-explicit fully discrete numerical scheme for the gradient flow model, and give some numerical analysis for the scheme, including the well-posedness and optimal convergence of the approximation. Some numerical experiments are provided to validate the theory.
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